tooluniverse
Use this skill when working with scientific research tools and workflows across bioinformatics, cheminformatics, genomics, structural biology, proteomics, and drug discovery. This skill provides access to 600+ scientific tools including machine learning models, datasets, APIs, and analysis packages. Use when searching for scientific tools, executing computational biology workflows, composing multi-step research pipelines, accessing databases like OpenTargets/PubChem/UniProt/PDB/ChEMBL, performing tool discovery for research tasks, or integrating scientific computational resources into LLM workflows.
Install
mkdir -p .claude/skills/tooluniverse && curl -L -o skill.zip "https://mcp.directory/api/skills/download/6700" && unzip -o skill.zip -d .claude/skills/tooluniverse && rm skill.zipInstalls to .claude/skills/tooluniverse
About this skill
ToolUniverse
Overview
ToolUniverse is a unified ecosystem that enables AI agents to function as research scientists by providing standardized access to 600+ scientific resources. Use this skill to discover, execute, and compose scientific tools across multiple research domains including bioinformatics, cheminformatics, genomics, structural biology, proteomics, and drug discovery.
Key Capabilities:
- Access 600+ scientific tools, models, datasets, and APIs
- Discover tools using natural language, semantic search, or keywords
- Execute tools through standardized AI-Tool Interaction Protocol
- Compose multi-step workflows for complex research problems
- Integration with Claude Desktop/Code via Model Context Protocol (MCP)
When to Use This Skill
Use this skill when:
- Searching for scientific tools by function or domain (e.g., "find protein structure prediction tools")
- Executing computational biology workflows (e.g., disease target identification, drug discovery, genomics analysis)
- Accessing scientific databases (OpenTargets, PubChem, UniProt, PDB, ChEMBL, KEGG, etc.)
- Composing multi-step research pipelines (e.g., target discovery → structure prediction → virtual screening)
- Working with bioinformatics, cheminformatics, or structural biology tasks
- Analyzing gene expression, protein sequences, molecular structures, or clinical data
- Performing literature searches, pathway enrichment, or variant annotation
- Building automated scientific research workflows
Quick Start
Basic Setup
from tooluniverse import ToolUniverse
# Initialize and load tools
tu = ToolUniverse()
tu.load_tools() # Loads 600+ scientific tools
# Discover tools
tools = tu.run({
"name": "Tool_Finder_Keyword",
"arguments": {
"description": "disease target associations",
"limit": 10
}
})
# Execute a tool
result = tu.run({
"name": "OpenTargets_get_associated_targets_by_disease_efoId",
"arguments": {"efoId": "EFO_0000537"} # Hypertension
})
Model Context Protocol (MCP)
For Claude Desktop/Code integration:
tooluniverse-smcp
Core Workflows
1. Tool Discovery
Find relevant tools for your research task:
Three discovery methods:
Tool_Finder- Embedding-based semantic search (requires GPU)Tool_Finder_LLM- LLM-based semantic search (no GPU required)Tool_Finder_Keyword- Fast keyword search
Example:
# Search by natural language description
tools = tu.run({
"name": "Tool_Finder_LLM",
"arguments": {
"description": "Find tools for RNA sequencing differential expression analysis",
"limit": 10
}
})
# Review available tools
for tool in tools:
print(f"{tool['name']}: {tool['description']}")
See references/tool-discovery.md for:
- Detailed discovery methods and search strategies
- Domain-specific keyword suggestions
- Best practices for finding tools
2. Tool Execution
Execute individual tools through the standardized interface:
Example:
# Execute disease-target lookup
targets = tu.run({
"name": "OpenTargets_get_associated_targets_by_disease_efoId",
"arguments": {"efoId": "EFO_0000616"} # Breast cancer
})
# Get protein structure
structure = tu.run({
"name": "AlphaFold_get_structure",
"arguments": {"uniprot_id": "P12345"}
})
# Calculate molecular properties
properties = tu.run({
"name": "RDKit_calculate_descriptors",
"arguments": {"smiles": "CCO"} # Ethanol
})
See references/tool-execution.md for:
- Real-world execution examples across domains
- Tool parameter handling and validation
- Result processing and error handling
- Best practices for production use
3. Tool Composition and Workflows
Compose multiple tools for complex research workflows:
Drug Discovery Example:
# 1. Find disease targets
targets = tu.run({
"name": "OpenTargets_get_associated_targets_by_disease_efoId",
"arguments": {"efoId": "EFO_0000616"}
})
# 2. Get protein structures
structures = []
for target in targets[:5]:
structure = tu.run({
"name": "AlphaFold_get_structure",
"arguments": {"uniprot_id": target['uniprot_id']}
})
structures.append(structure)
# 3. Screen compounds
hits = []
for structure in structures:
compounds = tu.run({
"name": "ZINC_virtual_screening",
"arguments": {
"structure": structure,
"library": "lead-like",
"top_n": 100
}
})
hits.extend(compounds)
# 4. Evaluate drug-likeness
drug_candidates = []
for compound in hits:
props = tu.run({
"name": "RDKit_calculate_drug_properties",
"arguments": {"smiles": compound['smiles']}
})
if props['lipinski_pass']:
drug_candidates.append(compound)
See references/tool-composition.md for:
- Complete workflow examples (drug discovery, genomics, clinical)
- Sequential and parallel tool composition patterns
- Output processing hooks
- Workflow best practices
Scientific Domains
ToolUniverse supports 600+ tools across major scientific domains:
Bioinformatics:
- Sequence analysis, alignment, BLAST
- Gene expression (RNA-seq, DESeq2)
- Pathway enrichment (KEGG, Reactome, GO)
- Variant annotation (VEP, ClinVar)
Cheminformatics:
- Molecular descriptors and fingerprints
- Drug discovery and virtual screening
- ADMET prediction and drug-likeness
- Chemical databases (PubChem, ChEMBL, ZINC)
Structural Biology:
- Protein structure prediction (AlphaFold)
- Structure retrieval (PDB)
- Binding site detection
- Protein-protein interactions
Proteomics:
- Mass spectrometry analysis
- Protein databases (UniProt, STRING)
- Post-translational modifications
Genomics:
- Genome assembly and annotation
- Copy number variation
- Clinical genomics workflows
Medical/Clinical:
- Disease databases (OpenTargets, OMIM)
- Clinical trials and FDA data
- Variant classification
See references/domains.md for:
- Complete domain categorization
- Tool examples by discipline
- Cross-domain applications
- Search strategies by domain
Reference Documentation
This skill includes comprehensive reference files that provide detailed information for specific aspects:
references/installation.md- Installation, setup, MCP configuration, platform integrationreferences/tool-discovery.md- Discovery methods, search strategies, listing toolsreferences/tool-execution.md- Execution patterns, real-world examples, error handlingreferences/tool-composition.md- Workflow composition, complex pipelines, parallel executionreferences/domains.md- Tool categorization by domain, use case examplesreferences/api_reference.md- Python API documentation, hooks, protocols
Workflow: When helping with specific tasks, reference the appropriate file for detailed instructions. For example, if searching for tools, consult references/tool-discovery.md for search strategies.
Example Scripts
Two executable example scripts demonstrate common use cases:
scripts/example_tool_search.py - Demonstrates all three discovery methods:
- Keyword-based search
- LLM-based search
- Domain-specific searches
- Getting detailed tool information
scripts/example_workflow.py - Complete workflow examples:
- Drug discovery pipeline (disease → targets → structures → screening → candidates)
- Genomics analysis (expression data → differential analysis → pathways)
Run examples to understand typical usage patterns and workflow composition.
Best Practices
-
Tool Discovery:
- Start with broad searches, then refine based on results
- Use
Tool_Finder_Keywordfor fast searches with known terms - Use
Tool_Finder_LLMfor complex semantic queries - Set appropriate
limitparameter (default: 10)
-
Tool Execution:
- Always verify tool parameters before execution
- Implement error handling for production workflows
- Validate input data formats (SMILES, UniProt IDs, gene symbols)
- Check result types and structures
-
Workflow Composition:
- Test each step individually before composing full workflows
- Implement checkpointing for long workflows
- Consider rate limits for remote APIs
- Use parallel execution when tools are independent
-
Integration:
- Initialize ToolUniverse once and reuse the instance
- Call
load_tools()once at startup - Cache frequently used tool information
- Enable logging for debugging
Key Terminology
- Tool: A scientific resource (model, dataset, API, package) accessible through ToolUniverse
- Tool Discovery: Finding relevant tools using search methods (Finder, LLM, Keyword)
- Tool Execution: Running a tool with specific arguments via
tu.run() - Tool Composition: Chaining multiple tools for multi-step workflows
- MCP: Model Context Protocol for integration with Claude Desktop/Code
- AI-Tool Interaction Protocol: Standardized interface for LLM-tool communication
Resources
- Official Website: https://aiscientist.tools
- GitHub: https://github.com/mims-harvard/ToolUniverse
- Documentation: https://zitniklab.hms.harvard.edu/ToolUniverse/
- Installation:
uv uv pip install tooluniverse - MCP Server:
tooluniverse-smcp
More by jimmc414
View all skills by jimmc414 →You might also like
flutter-development
aj-geddes
Build beautiful cross-platform mobile apps with Flutter and Dart. Covers widgets, state management with Provider/BLoC, navigation, API integration, and material design.
drawio-diagrams-enhanced
jgtolentino
Create professional draw.io (diagrams.net) diagrams in XML format (.drawio files) with integrated PMP/PMBOK methodologies, extensive visual asset libraries, and industry-standard professional templates. Use this skill when users ask to create flowcharts, swimlane diagrams, cross-functional flowcharts, org charts, network diagrams, UML diagrams, BPMN, project management diagrams (WBS, Gantt, PERT, RACI), risk matrices, stakeholder maps, or any other visual diagram in draw.io format. This skill includes access to custom shape libraries for icons, clipart, and professional symbols.
ui-ux-pro-max
nextlevelbuilder
"UI/UX design intelligence. 50 styles, 21 palettes, 50 font pairings, 20 charts, 8 stacks (React, Next.js, Vue, Svelte, SwiftUI, React Native, Flutter, Tailwind). Actions: plan, build, create, design, implement, review, fix, improve, optimize, enhance, refactor, check UI/UX code. Projects: website, landing page, dashboard, admin panel, e-commerce, SaaS, portfolio, blog, mobile app, .html, .tsx, .vue, .svelte. Elements: button, modal, navbar, sidebar, card, table, form, chart. Styles: glassmorphism, claymorphism, minimalism, brutalism, neumorphism, bento grid, dark mode, responsive, skeuomorphism, flat design. Topics: color palette, accessibility, animation, layout, typography, font pairing, spacing, hover, shadow, gradient."
godot
bfollington
This skill should be used when working on Godot Engine projects. It provides specialized knowledge of Godot's file formats (.gd, .tscn, .tres), architecture patterns (component-based, signal-driven, resource-based), common pitfalls, validation tools, code templates, and CLI workflows. The `godot` command is available for running the game, validating scripts, importing resources, and exporting builds. Use this skill for tasks involving Godot game development, debugging scene/resource files, implementing game systems, or creating new Godot components.
nano-banana-pro
garg-aayush
Generate and edit images using Google's Nano Banana Pro (Gemini 3 Pro Image) API. Use when the user asks to generate, create, edit, modify, change, alter, or update images. Also use when user references an existing image file and asks to modify it in any way (e.g., "modify this image", "change the background", "replace X with Y"). Supports both text-to-image generation and image-to-image editing with configurable resolution (1K default, 2K, or 4K for high resolution). DO NOT read the image file first - use this skill directly with the --input-image parameter.
fastapi-templates
wshobson
Create production-ready FastAPI projects with async patterns, dependency injection, and comprehensive error handling. Use when building new FastAPI applications or setting up backend API projects.
Related MCP Servers
Browse all serversBoost your AI code assistant with Context7: inject real-time API documentation from OpenAPI specification sources into y
By Sentry. MCP server and CLI that provides tools for AI agents working on iOS and macOS Xcode projects. Build, test, li
Effortlessly manage Google Cloud with this user-friendly multi cloud management platform—simplify operations, automate t
Orchestrate complex problem-solving with our multi agent system—specialized agents offer deep, structured, and parallel
Rtfmbro is an MCP server for config management tools—get real-time, version-specific docs from GitHub for Python, Node.j
Bridge AI with the LinkedIn API to auto connect, manage profiles, and integrate with Pipedrive for powerful prospecting
Stay ahead of the MCP ecosystem
Get weekly updates on new skills and servers.